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Linking Heterogeneous Data for Food Security Prediction

机译:连接异构数据以进行食品安全预测

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摘要

Identifying food insecurity situations timely and accurately is a complex challenge. To prevent food crisis and design appropriate interventions, several food security warning and monitoring systems are very active in food-insecure countries. However, the limited types of data selected and the limitations of data processing methods used make it difficult to apprehend food security in all its complexity.In this work, we propose models that aim to predict two key indicators of food security: the food consumption score and the household dietary diversity score. These indicators are time consuming and costly to obtain. We propose using heterogeneous data as explanatory variables that are more convenient to collect. These indicators are calculated using data from the permanent agricultural survey conducted by the Burkin-abe government and available since 2009. The proposed models use deep and machine learning methods to obtain an approximation of food security indicators from heterogeneous explanatory data. The explanatory data are rasters (population densities, rainfall estimates, land use, etc.), GPS points (of hospitals, schools, violent events), quantitative economic variables (maize prices, World Bank variables), meteorological and demographic variables. A basic research issue is to perform pre-processing adapted to each type of data and then to find the right methods and spatio-temporal scale to combine them. This work may also be useful in an operational approach, as the methods discussed could be used by food security warning and monitoring systems to complement their methods to obtain estimates of key indicators a few weeks in advance and to react more quickly in case of famine.
机译:及时,准确地识别食品不安全情况是复杂的挑战。为防止粮食危机和设计适当的干预措施,若干粮食安全警告和监测系统在食品不安全的国家非常活跃。然而,所选择的有限类型的数据以及数据处理方法的限制使得难以在其所有复杂性中逮捕粮食安全。在这项工作中,我们提出了旨在预测粮食安全两个关键指标的模型:食品消费分数和家庭饮食多样性分数。这些指标是耗时和昂贵的获得。我们建议使用异构数据作为收集更方便的解释性变量。这些指标由来自Burkin-Abe政府的永久性农业调查的数据计算,自2009年以来可用。拟议的模型使用深层和机器学习方法,从异构解释性数据中获得食品安全指标的近似值。解释性数据是栅格(人口密度,降雨估计,土地使用等),GPS积分(医院,学校,暴力事件),定量经济变量(玉米价格,世界银行变量),气象和人口变量。基本研究问题是执行适合于每种类型的数据的预处理,然后找到合适的方法和时空刻度来组合它们。这项工作也可能在操作方法中有用,因为讨论的方法可以由食品安全警告和监测系统使用,以补充他们的方法,以提前几周获得关键指标的估计,并在饥荒的情况下更快地反应。

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